You'll get the best performance if you forget the where clause and place all conditions in the ON expression.
I think this is because the query first has to join the tables and then runs the where clause on that, so if you can reduce what is required to join then that's the fasted way to get the results/do the update.
You have a table of users. They can log in using their
phone_number. These accounts can be active (1) or inactive (0). This table has 50000 rows
You then have a table of users to disable (blacklist) at one go because you find out they've all done something bad.
A script runs that checks for users in the
blacklist_users table and disables them in the
blacklist_users table however, only has one column with
account numbers all mixed together.
blacklist_users table also has a "has_run" indicator which needs to be set to 1 (true) when it has been run so it can be skipped in future queries.
So if you have a WHERE clause here, internally, the results are getting brought back in the join and then the WHERE clause is being queried against that dataset. Instead, we can move all the where clause conditions into the join, and internally, remove the second query completely.
Therefore, this is the most optimal query to avoid needless lookups of the
UPDATE users User
User.username = BlacklistUser.account_ref
User.email = BlacklistedUser.account_ref
User.phone_number = BlacklistUser.account_ref
User.is_active = 1
BlacklistUser.has_run = 0
User.is_active = 0,
BlacklistUser.has_run = 1;
If we had to join on just the OR conditions it would essentially need to check each row 4 times (1 for
email, 1 for
phone_number, 1 for
username, 1 for
is_active) to see if it should join, and potentially return a lot more rows. However, by giving it more conditions it can "skip" every row we're not updating.
It's more readable. All the conditions are in one place and the rows to update are in another place.
I hope all that makes sense.